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A Comparison of Techniques for Sign Language Alphabet Recognition Using Armband Wearables

机译:使用臂带可穿戴物的手语字母识别技术比较

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Recent research has shown that reliable recognition of sign language words and phrases using user-friendly and noninvasive armbands is feasible and desirable. This work provides an analysis and implementation of including fingerspelling recognition (FR) in such systems, which is a much harder problem due to lack of distinctive hand movements. A novel algorithm called DyFAV (Dynamic Feature Selection and Voting) is proposed for this purpose that exploits the fact that fingerspelling has a finite corpus (26 alphabets for the American Sign Language (ASL)). Detailed analysis of the algorithm used as well as comparisons with other traditional machine-learning algorithms is provided. The system uses an independent multiple-agent voting approach to identify letters with high accuracy. The independent voting of the agents ensures that the algorithm is highly parallelizable and thus recognition times can be kept low to suit real-time mobile applications. A thorough explanation and analysis is presented on results obtained on the ASL alphabet corpus for nine people with limited training. An average recognition accuracy of 95.36% is reported and compared with recognition results from other machine-learning techniques. This result is extended by including six additional validation users with data collected under similar settings as the previous dataset. Furthermore, a feature selection schema using a subset of the sensors is proposed and the results are evaluated. The mobile, noninvasive, and real-time nature of the technology is demonstrated by evaluating performance on various types of Android phones and remote server configurations. A brief discussion of the user interface is provided along with guidelines for best practices.
机译:最近的研究表明,使用用户友好和非侵入式臂带的可靠识别手语言单词和短语是可行的并且可取的。这项工作提供了在这种系统中包括手指识别(FR)的分析和实施,这是由于缺乏独特的手动运动,这是一个更难的问题。为此目的提出了一种名为Dyfav(动态特征选择和投票)的新型算法,这是指Fingerspelling具有有限语料库的事实(美国手语(ASL)的26个字母)。提供了对算法的详细分析以及与其他传统机器学习算法的比较。该系统使用独立的多代理投票方法来识别高精度的字母。代理的独立投票可确保算法非常平行化,因此可以保持识别时间以适应实时移动应用。在培训有限有限的九个人的ASL字母表中获得了彻底的解释和分析。报告了95.36%的平均识别准确度,并与其他机器学习技术的识别结果进行了比较。该结果通过包括六个附加验证用户,其中包含与以前的数据集类似的设置相似的数据。此外,提出了使用传感器的子集的特征选择模式,并评估结果。通过评估各种类型的Android手机和远程服务器配置的性能来证明技术的移动,非侵入性和实时性。简要讨论用户界面以及最佳实践的指导。

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